Evaluation of a Fall Alerting System based on a Convolutional Deep Neural Network

Loading...
Thumbnail Image

Files

CODIT_WIP_ECasilari_RIUMA.pdf (277.81 KB)

Description: Fichero con el resumen de la ponencia

Identifiers

Publication date

Reading date

Collaborators

Advisors

Tutors

Editors

Journal Title

Journal ISSN

Volume Title

Publisher

Metrics

Google Scholar

Share

Research Projects

Organizational Units

Journal Issue

Department/Institute

Abstract

Owing to the effects of falls on quality of life of the elderly, automatic fall detection systems (FDS) have become a key research topic in the ambit of telecare. This works assesses the performance of convolutional neural networks when they are applied to identify fall accidents in a wearable FDS provided with a tri-axial accelerometer. The evaluation of the detection algorithm is carried out by employing a benchmarking repository with a wide set of traces captured from a wide group of volunteers that executed a programmed series of Activities of the Daily Living (ADLs) and emulated falls. Results show that the CNN can properly distinguish both types of movements with a success rate (specificity and sensitivity) around 99%.

Description

Artículo sobre detección de caídas con redes neuronales profundas

Bibliographic citation

Endorsement

Review

Supplemented By

Referenced by